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For the non-periodic case in [link] the spectrum is a function of continuous frequency and for the periodic case in [link] , the spectrum is a number sequence (a function of discrete frequency).
The discrete-time Fourier transform (DTFT) as defined in terms samples of a continuous function is
and its inverse
can be derived by noting that is periodic with period and, therefore, it can be expanded in a Fourier series with [link] resulting from calculating the series coefficients using [link] .
The spectrum of a discrete-time signal is defined as the DTFT of the samples of a continuous-time signal given in [link] . Samples of the signal are given by the inverse DTFT in [link] but they can also be obtained by directly sampling in [link] giving
which can be rewritten as an infinite sum of finite integrals in the form
where is a periodic function made up of shifted versions of (aliased) defined in [link] Because [link] and [link] are equal for all and because the limits can be shifted by without changing the equality, the integrands are equal and we have
where is a periodic function made up of shifted versions of as in [link] . The spectrum of the samples of is an aliased version of the spectrum of itself. The closer together the samples are taken, the further apart the centers of the aliasedspectra are.
This result is very important in determining the frequency domain effects of sampling. It shows what the sampling rate should be and it is thebasis for deriving the sampling theorem.
Samples of the spectrum can be calculated from a finite number of samples of the original continuous-time signal using the DFT. If welet the length of the DFT be and separation of the samples in the frequency domain be and define the periodic functions
and
then from [link] and [link] samples of the DTFT of are
therefore,
if . This formula gives a method for approximately calculating values of the Fourier transform of a function by taking theDFT (usually with the FFT) of samples of the function. This formula can easily be verified by forming the Riemann sum to approximate the integralsin [link] or [link] .
If the signal is discrete in origin and is not a sampled function of a continuous variable, the DTFT is defined with as
with an inverse
If we want to calculate , we must sample it and that is written as
which after breaking the sum into an infinite sum of length- sums as was done in [link] becomes
if . This allows us to calculate samples of the DTFT by taking the DFT of samples of a periodized .
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